from transformers import TokenClassificationPipeline class UniversalDependenciesPipeline(TokenClassificationPipeline): def _forward(self,model_inputs): import torch v=model_inputs["input_ids"][0].tolist() with torch.no_grad(): e=self.model(input_ids=torch.tensor([v[0:i]+[self.tokenizer.mask_token_id]+v[i+1:]+[j] for i,j in enumerate(v[1:-1],1)],device=self.device)) return {"logits":e.logits[:,1:-2,:],**model_inputs} def postprocess(self,model_outputs,**kwargs): import numpy if "logits" not in model_outputs: return "".join(self.postprocess(x,**kwargs) for x in model_outputs) e=model_outputs["logits"].numpy() r=[1 if i==0 else -1 if j.endswith("|root") else 0 for i,j in sorted(self.model.config.id2label.items())] e+=numpy.where(numpy.add.outer(numpy.identity(e.shape[0]),r)==0,0,numpy.nan) g=self.model.config.label2id["X|_|goeswith"] r=numpy.tri(e.shape[0]) for i in range(e.shape[0]): for j in range(i+2,e.shape[1]): r[i,j]=r[i,j-1] if numpy.nanargmax(e[i,j-1])==g else 1 e[:,:,g]+=numpy.where(r==0,0,numpy.nan) m,p=numpy.nanmax(e,axis=2),numpy.nanargmax(e,axis=2) h=self.chu_liu_edmonds(m) z=[i for i,j in enumerate(h) if i==j] if len(z)>1: k,h=z[numpy.nanargmax(m[z,z])],numpy.nanmin(m)-numpy.nanmax(m) m[:,z]+=[[0 if j in z and (i!=j or i==k) else h for i in z] for j in range(m.shape[0])] h=self.chu_liu_edmonds(m) v=[(s,e) for s,e in model_outputs["offset_mapping"][0].tolist() if sb else b-1 for a,b in enumerate(h) if i!=a] v[i-1]=(v[i-1][0],v.pop(i)[1]) q.pop(i) t=model_outputs["sentence"].replace("\n"," ") u="# text = "+t+"\n" for i,(s,e) in enumerate(v): u+="\t".join([str(i+1),t[s:e],t[s:e] if g else "_",q[i][0],"_","|".join(q[i][1:-1]),str(0 if h[i]==i else h[i]+1),q[i][-1],"_","_" if i+1